Field of the Invention
[0001] The invention relates generally to tire monitoring systems for determining tire tread
wear and, more particularly, to a system and method for estimating tire wear state
based upon sensor measurements. The invention also relates generally to tire monitoring
systems for determining a tire state estimation such as tire tread wear and, more
particularly, to a method for estimating tire state based upon a CAN bus available
signal.
Background of the Invention
[0002] Tire wear plays an important role in vehicle safety, reliability and performance.
Tread wear, referring to the loss of tread material, directly affects such vehicle
factors. Tread wear may be monitored and measured through placement of wear sensors
in the tire tread. Reliability of the direct wear measurement of tire tread, however,
can be problematic due to issues such as sensor failure, difficulty in sensor integration
into a tire tread and difficulty in retrieval of sensor data over the lifetime of
a tire tread.
[0003] It is accordingly desirable to achieve a system and method that accurately and reliably
measures tire wear state and communicates wear state to vehicle operators and/or to
vehicle operating systems such as braking and stability control systems.
Summary of the Invention
[0004] The invention relates to a system in accordance with claim 1 and to a method in accordance
with claim 7.
[0005] Dependent claims refer to preferred embodiments of the invention.
[0006] According to one preferred aspect of the invention, a tire wear state estimation
system for a tire supporting a vehicle includes a vehicle-based sensor for measuring
wheel speed of the wheel supporting the tire and generating a wheel speed signal;
a feature-extracting processor for extracting from the wheel speed signal a first
extracted feature, the first extracted feature quantitatively changing responsive
to a wear level change of the tire; a feature-extracting processor for extracting
from the wheel speed signal a second extracted feature, the second extracted feature
quantitatively changing responsive to a wear level change of the tire; a data classifier
receiving as inputs first extracted feature data and second extracted feature data;
the data classifier operable to conduct a classification of the first extraction feature
data relative to the second extraction feature data; and a wear state estimator operable
to estimate a wear state for the tire based upon the classification of the first extraction
feature data relative to the second extraction feature data.
[0007] In another preferred aspect of the invention, the first extracted feature is a median
slip-ratio of the tire and the second extracted feature is a slip-ratio rate of the
tire.
[0008] Pursuant to another preferred aspect of the invention, the median slip-ratio of the
tire and the slip-ratio rate of the tire are determined by a statistical analysis
of the wheel speed signal.
[0009] The estimation of the wear state of the tire is determined in a further preferred
aspect of the invention from a support vector data classification algorithm using
as inputs the median slip-ratio data of the tire and the slip-ratio data of the tire.
[0010] In another preferred aspect of the invention, the tire wear state estimator is operative
to estimate the tire wear state from a combined updated averaging of the estimated
slow-speed effective radius estimations of the tire during the slow-speed distance
intervals.
[0011] According to another preferred aspect of the invention, a display is provided for
communicating the estimated tire wear state to an operator of the vehicle. The display
may be vehicle-based and/or a handheld device connected to receive wireless communication
of the estimated tire wear state from the tire-wear state estimator.
[0012] According to another preferred aspect of the invention, a method for estimating a
tire state, such as but not limited to tire wear state, includes: utilizing a vehicle-based
sensor for measuring a wheel speed of the tire and generating a wheel speed signal;
extracting a first extracted feature from the wheel speed signal; extracting a second
feature from the wheel speed signal; classifying data from the first extracted feature
and data from the second extracted feature using a support vector data classification
algorithm; and applying the algorithm to estimate the tire state.
[0013] In another preferred aspect of the invention, the method includes measuring at least
one tire parameter; applying the at least one tire parameter measurement to adapt
the support vector data classification algorithm; and applying the adapted algorithm
to estimate the tire state.
[0014] In a further preferred aspect of the invention, tire temperature, tire inflation
pressure and tire construction characteristics are used to adapt the support vector
data classification algorithm.
[0015] The method, in an additional preferred aspect of the invention, uses a median slip-ratio
of the tire and a slip-ratio rate of the tire derived from a statistical analysis
of the wheel speed signal as inputs into the support vector classification model to
estimate a tire wear state.
Definitions
[0016] "ANN" or "Artificial Neural Network" is an adaptive tool for non-linear statistical
data modeling that changes its structure based on external or internal information
that flows through a network during a learning phase. ANN neural networks are non-linear
statistical data modeling tools used to model complex relationships between inputs
and outputs or to find patterns in data.
[0017] "Axial" and "axially" means lines or directions that are parallel to the axis of
rotation of the tire.
[0018] "CAN bus" is an abbreviation for controller area network.
[0019] "Circumferential" means lines or directions extending along the perimeter of the
surface of the annular tread perpendicular to the axial direction.
[0020] "Equatorial centerplane (CP)" means the plane perpendicular to the tire's axis of
rotation and passing through the center of the tread.
[0021] "Footprint" means the contact patch or area of contact created by the tire tread
with a flat surface as the tire rotates or rolls.
[0022] "Kalman Filter" is a set of mathematical equations that implement a predictor-corrector
type estimator that is optimal in the sense that it minimizes the estimated error
covariance when some presumed conditions are met.
[0023] "Lateral" means an axial direction.
[0024] "Lateral edges" means a line tangent to the axially outermost tread contact patch
or footprint as measured under normal load and tire inflation, the lines being parallel
to the equatorial centerplane.
[0025] "Luenberger Observer" is a state observer or estimation model. A "state observer"
is a system that provide an estimate of the internal state of a given real system,
from measurements of the input and output of the real system. It is typically computer-implemented,
and provides the basis of many practical applications.
[0026] "MSE" is an abbreviation for mean square error, the error between and a measured
signal and an estimated signal which the Kalman filter minimizes.
[0027] "Net contact area" means the total area of ground contacting tread elements between
the lateral edges around the entire circumference of the tread divided by the gross
area of the entire tread between the lateral edges.
[0028] "Outboard side" means the side of the tire farthest away from the vehicle when the
tire is mounted on a wheel and the wheel is mounted on the vehicle.
[0029] "Piezoelectric Film Sensor" a device in the form of a film body that uses the piezoelectric
effect actuated by a bending of the film body to measure pressure, acceleration, strain
or force by converting them to an electrical charge.
[0030] "PSD" is power spectral density (a technical name synonymous with FFT (fast fourier
transform).
[0031] "Radial" and "radially" means directions radially toward or away from the axis of
rotation of the tire.
Brief Description of the Drawings
[0032] The invention will be described by way of example and with reference to the accompanying
drawings in which:
FIG. 1 is perspective view of a vehicle and a sensor-equipped tire.
FIG. 2A is a graph for a new tire showing normalized force vs. slip-ratio.
FIG. 2B is a graph for a worn tire showing normalized force vs. slip-ratio.
FIG. 2C is a force slip-curve comparison for a new vs. worn tire.
FIG. 3 is a tire force slip-curve comparing experimental data, regression model fit
and tire model fit graphs.
FIG. 4 is a wear dependency comparison between a new and a worn tire graphing longitudinal
friction vs. longitudinal slip.
FIG. 5A is a longitudinal force graph for a new tire over time and an amplitude spectrogram
for the tire mounted to a mid-tier sedan.
FIG. 5B is a longitudinal force graph for a worn tire over time and an amplitude spectrogram
for the tire mounted to a mid-tier sedan.
FIG. 6A is a graph showing instrumented vehicle testing results of a new tire on a
mid-tier sedan, graphing brake pressure, slip-ratio and optimal slip-ratio over time.
FIG. 6B is a graph of testing results similar to FIG. 6B but for a worn tire.
FIG. 7A is a graph of longitudinal force over time testing results for a new tire
mounted to a high-performance car and an associated amplitude spectrogram.
FIG. 7B is a testing results graph similar to FIG. 7A but for a worn tire.
FIG. 8A is a graph showing instrumented vehicle testing results of a new tire on a
high performance sports car, graphing brake pressure, slip-ratio and optimal slip-ratio
over time.
FIG. 8B is a testing results graph similar to FIG. 8A but for a worn tire.
FIG. 9A is a testing results wheel speed signal analysis, showing a slip-histogram
(mid-tier sedan) of frequency density vs. slip-ratio for a worn and a new tire wear
states.
FIG. 9B is a cumulative distribution analysis graph showing slip-ratio rate distribution
test results.
FIG. 9C is a features extracted wheel speed signal analysis graph of slip-ratio rate
vs. median slip-ratio for a mid-tier sedan.
FIG. 10A is a wheel speed signal analysis test result slip-histogram for a sports
car, showing worn and new tire wear states.
FIG. 10B is a graph of cumulative distribution analysis for a sports car, graphing
cumulative probability vs. slip-ratio rate for worn and new tire wear states.
FIG. 10C is graph of worn vs. new tires mounted on a sports car and showing wheel
speed signal analysis.
FIG. 11 is the graph of FIG. 10C with additional linear line added to show possibility
of separation of data.
FIG. 12 is a representative depiction showing use of separating hyperplane in a manner
that finds a linear separating hyperplane with a maximal margin.
FIG. 13 is features extracted data graph and showing data scaling and SVM classifier
application to yield a chosen hyperplane that maximizes margin (separability).
FIG. 14A is a graph showing temperature dependency between front longitudinal friction
and longitudinal slip.
FIG. 14B is a graph showing pressure dependency between longitudinal friction and
longitudinal slip.
FIG. 14C is a graph showing tire construction dependency between longitudinal friction
and longitudinal slip.
FIG. 15 is a system diagram showing tire wear state estimation.
FIG. 16A is a graph showing slip-ratio gradient analysis in a new tire and showing
raw vs. filtered mu and slip-rate variance.
FIG. 16B is a graph similar to FIG. 16A but for a worn tire.
FIG. 17A is a graph showing a second slip-ratio gradient analysis in a new tire and
showing raw vs. filtered mu and slip-rate variance.
FIG. 17B is a graph similar to FIG. 17A in the second analysis but for a worn tire.
Detailed Description of Example Embodiments of the Invention
[0033] Referring to FIGS. 1 and 15, a tire wear estimation system is shown for estimating
tread wear on each tire 12 supporting vehicle 10. While vehicle 10 is depicted as
a passenger car, the invention is not to be so restricted. The principles of the invention
find application in other vehicle categories such as commercial trucks in which vehicles
may be supported by more or fewer tires. The tires 12 are of conventional construction
mounted to a wheel 14 and each having a circumferential tread 16 that wears from road
abrasion with age and tire sidewalls 18. Each tire is equipped with a sensor or transducer
24 mounted to the tire for the purpose of detecting tire pressure, temperature, and
a tire identification (tire ID) and transmitting such sensor measurements and tire
ID data to a remote processor for analysis. The sensor 24, referred alternatively
herein as a tire pressure monitoring (TPMS) module or sensor, is of a type commercially
available and may be affixed to the tire inner liner 22 by suitable means such as
adhesive. The sensor 24 may be of any known configuration, such as piezoelectric sensors
that detect a pressure within a tire cavity 20. The tire ID data provided by the module
24 is used to reference a tire construction database from which construction characteristics
of the tire 12 are extracted for a purpose explained below.
[0034] The subject system and method for estimating a tire wear state attempts to overcome
the challenges in measuring a tire wear state directly by means of tire mounted wear
sensors. As such, the subject system and method is referred herein as an "indirect"
wear sensing system and method. The direct approach to measuring tire wear from tire
mounted sensors has multiple challenges. Placing the sensors in the "green" tire to
be cured at high temperatures may cause damage to the wear sensors. In addition, sensor
durability can prove to be an issue in meeting the millions of cycles requirement
for tires. Moreover, wear sensors in a direct measurement approach must be small enough
not to cause any uniformity problems as the tire rotates at high speeds. Finally,
wear sensors can be costly and add significantly to the cost of the tire.
[0035] The subject tire wear estimation system utilizes an indirect approach, and avoids
the problems attendant use of tire wear sensors mounted directly to a tire tread.
The system utilizes instead a tire wear state estimation algorithm using signals available
on the vehicle CAN bus (controller area network) in combination with tire ID, tire
pressure, and tire temperature information (tire TPMS). The system utilizes the influence
of the tire wear state on the mu-slip ratio curve, comparing new tire mu vs. slip-ratio
with that of a worn tire. FIG. 2A shows a slip-curve area in curve 26 generated from
a braking skid trailer test. The skid was equipped with a Goodyear Eagle F1 asymmetric
tire size 255/45ZR19. Curve 26 shows the slip-curve from a new tire and identifies
normalized force [µ] vs. slip-ratio [λ]. The slip-curve area for a new tire with μ
> 85% of μ
peak [%] = 36 is indicated at numeral 28. In FIG. 2B the curve 30 is shown but for a worn
tire with area 32 identified.
[0036] In FIG. 2C the curves of FIGS. 2A and 2B are superimposed for comparison purposes
at 34. In comparing new tire to worn, it is seen that the worn tire has a higher braking
stiffness, location of the optimum slip-ratio for maximum tire force changes, i.e.
moves to the left, and a noticeable change occurs in the force slip-curve shape factor,
i.e. drop after peak. FIG. 3 represents a summary of sensitivity study in tire force
slip-curve 34, comparing experimental data, regression model fit and tire model fit.
The braking stiffness (slope in the low slip-region) region is identified as is the
peak grip and shape factor (non-linear force slip-curve drop) and an optimal slip-ratio
is shown.
[0037] From FIG. 3 it will be seen that the tire wear state dependency levels for braking
stiffness is high, for peak grip the sensitivity is low-moderate, the optimal slip-ratio
is high and the shape factor is moderate-high. In FIG. 4, the curve 38 derived from
testing shows by a shift to the left the effect of decreasing tread depth on friction
and increase in longitudinal stiffness (origin). It is thus shown that in comparison
to a new tire, a worn tire has a higher braking stiffness, the optimum slip-ratio
for maximum tire force changes and shifts left and a change occurs in the shape of
the mu-slip curve.
[0038] In FIG. 5A, curve 40 represents test results for a new tire mounted to a mid-tier
sedan. The curve 40 shows braking force and vehicle speed. An amplitude spectrogram
42 shows frequency over time and magnitude dB. FIG. 5B shows the corresponding results
in curve 44 for a worn tire. An amplitude spectrogram 46 shows frequency over time
and magnitude dB. In FIG. 6A, testing results in curve 48 shows brake pressure, slip-ratio
and optimal slip-ratio for a new tire mounted to a mid-tier sedan. FIG. 6B shows the
corresponding results in curve 50 for a worn tire. It will be seen that the worn tire
is less forgiving. During the pressure release cycle the tire undershoots more and
during the pressure rise cycle the tire overshoots more.
[0039] Comparable tests were run on a new tire and a worn tire on a high-performance sports
car. Test results for the new tire are shown by curve 52 and spectrogram 54 of FIG.
7A and, for the worn tire, curve 56 and spectrogram 58 of FIG. 7B. Brake pressure,
slip-ratio and optimal slip-ratio test results are shown in FIG. 8A for the new tire
and in FIG. 8B for the worn tire by respective curves 60 and 62. The results show
that the worn tire is less forgiving. During the pressure release cycle the tire undershoots
more and during the pressure rise cycle the tire overshoots more.
[0040] The subject system draws the following conclusions on the influence of tire wear
state on the mu-slip curve. In the case of a worn tire:
- (1) Location of the optimum slip-ratio for maximum tire force moves to the left (influence
on the tire mu-slip curve).
- (2) The worn tire is less forgiving as discussed above.
[0041] The system objectivizes these affects using signals available on the vehicle CAN
bus by using wheel speed signals and utilizes tire-based sensor and tire ID to enhance
the estimation of tire wear in view of the vehicle CAN bus signals. From the wheel
speed signal analysis, in the case of a worn tire:
- (1) Location of the optimum slip-ratio for maximum tire force moves to the left (influence
on the tire mu-slip curve).
- (2) The worn tire is less forgiving- during the pressure release cycle the tire "undershoots"
more and during the pressure rise cycle the tire "overshoots" more.
[0042] In regard to the extraction of an optimum slip-ratio point, the location of the optimum
slip-ratio point is characterized by determining the median slip-ratio. With regard
to the use of the "less forgiving" characteristics of a worn tire, higher slip-ratio
undershoot and overshoot behavior is characterized using the cumulative probability
distribution function for the slip-ratio rate/speed.
[0043] The analysis of wheel speed signals will by understood in reference to FIGS. 9A through
9C. The extraction of Feature 1, namely location of the optimum slip-point, is found
in FIG. 9A showing wheel speed signal analysis for a mid-tier sedan 64. FIG. 9A shows
a slip-histogram comparing new to worn tire wear states. The shift in the median slip-point
(worn tire is stiffer) locates the optimum slip-ratio point. The extraction of Feature
2, namely the slip-ratio rate distribution is illustrated by the cumulative distribution
graph 66 of FIG. 9B between a new and a worn tire. The cumulative probability vs.
slip-ratio rate graph 66 shows change in the cumulative probability distribution caused
by a worn tire having more undershoot and overshot during ABS cycling because of its
higher slip-rate behavior. By analyzing the undershoot and overshoot of a new vs.
worn tire, a conclusion as to the state of tire wear may be made by the measured cumulative
probability.
[0044] A summary of the features extracted is shown in graph 68 of FIG. 9C in which the
worn tire is observed to have a higher slip-ratio gradient and a higher braking stiffness
than that of a new tire. FIGS. 10A, 10B and 10C in respective graphs 70, 72, 74 confirm
the relationships in a test conducted on new and worn tires mounted to a high-performance
sports car. By identifying Feature 1 (median slip-rate) and Feature 2 (slip-rate rate
at 80 percent CDF wherein "CDF" is the cumulative distribution function), the wear
state of a tire may be estimated.
[0045] A feature extraction-repeatability test is conducted and summarized in FIG. 11 graph
78. Slip-ratio rate at cumulative probability is plotted against median slip-ratio
for both worn and new tires on a sports car. The data from the test indicates the
worn tire as having a higher slip-ratio rate from its higher slip-ratio gradient and
a lower median slip-ratio. The test results indicate the data is linearly separable.
Through the use of a support vector machine (SVM), data classification is represented
as indicated in FIG. 12. An optimal separating hyperplane SVM finds a linear separating
hyperplane with the maximal margin. The hyperlane that maximizes the margin and minimizes
the misclassification is shown at 80 which, in two dimensional space, represents a
straight line.
[0046] Use of the SVM in data classification is summarized in FIG. 13. The features extracted
data from graph 82 is scaled at 84 and applied to SVM classifier 86. The resultant
hyperplane graph of the data is represented by graph 88 showing scaled slip-ratio
rate vs. scaled median slip-ratio. The chosen hyperplane maximizes the margin, that
is separability of the data. The support vector classification is as indicated in
FIG. 13 at 90.
[0047] There are other factors that influence the tire mu-slip curve which are considered
in the estimation of tire wear using feature extraction discussed above. Those factors
include the temperature of the tire, the tire inflation pressure, the tire construction
by manufacturer make and tire type. The graph 92 of FIG. 14A shows the temperature
dependency by graphing slip at friction maximum and longitudinal stiffness (origin)
for new and worn tires at reference, hot and warm temperatures. The influence of temperature
on the extracted features is confirmed.
[0048] The dependency of tire pressure on the mu-slip curve is demonstrated by the graph
94 of FIG. 14B. Varying tire pressures causes a shift in the curve for both new and
worn tires. Likewise tire construction has an influence on the mu-slip curve for both
new and worn tires. In FIG. 14C, test results are shown by curve 96. The test was
conducted on summer vs. winter new and worn tires; the new tire curve shown by FIG.
14C. Differences between summer and winter constructed tires is shown in the table
presented in FIG. 14C. As used herein, "tire construction" not only refers to the
type of application in which a tire is intended to be used, but also the manufacturer
of the tire. Summer tires between different manufactures will have different dependency
influence on the mu-slip curve. Accordingly, tire ID as explained will, by identifying
the particular tire being evaluated, enable construction type and manufacturer to
be identified. In so doing, the particular effect of the tire ID on the mu-slip curve
may be ascertained.
[0049] In summary, braking stiffness sensitivities are as follows. A decreasing tread depth
(new to worn) increases braking stiffness. Decreasing pressure likewise increases
braking stiffness. Increasing temperature decreases braking stiffness. Construction
influence, summer to winter, decreases braking stiffness. The degree and magnitude
of the increase and decrease in braking stiffness in any given tire may be empirically
determined and placed in an accessible database. Upon identifying a tire through tire
ID recognition, the influence of tread depth, pressure, temperature, and construction
may be determined by consulting the prepared database.
[0050] Tire-attached TPMS sensors are used by the subject wear estimation system. Such TPMS
sensors present opportunity to compensate for the influence of these factors.
[0051] Referring to FIG. 15, the subject system for indirectly estimating tire wear state
is shown at 98. The vehicle 10 is supported by tires 12 that are equipped with a tire-attached
TPMS module 24. The TPMS module 24 includes a sensor for determining tire inflation
pressure, and a tire temperature sensor, and tire ID from which tire type, construction
and manufacture may be determined. "TPMS +" is used to refer to the use of tire-based
sensors to generate pressure and temperature measurements as well as tire ID (hence
the use of "+" nomenclature) to identify the tire. The pressure, temperature, and
tire ID are collectively referred to as "tire-based sensor inputs". The vehicle 10
is equipped with an on-vehicle sensor for generating a wheel speed signal accessible
via the vehicle CAN bus 100 in conventional manner. From the wheel speed signal, features
are extracted 102, namely slip-ratio rate at 80 percent cumulative probability and
median slip-ratio (λ). A support vector classification is made from the data obtained
from the feature extraction as represented by graph 105. A worn tire will generate
data represented as shown and a new tire data represented by the distribution shown.
The difference in classification will thus be indicative as to whether the tire is
worn or new, i.e. the tire wear state 106. The tire-based sensor inputs from the TPMS
+ module is used to compensate for the influence of pressure, temperature and tire
construction.
[0052] FIG. 16A is a graph 108 showing a slip-ratio gradient analysis for a new tire. Slip-ratio
gradient is defined as the change in friction vs. the slip-rate. The graph plots raw
mu, filtered mu, raw slip-rate and filtered slip-rate. The slip-rate gradient equals
21.66. In FIG. 16B, the same test is conducted on a worn tire yielding graph 110 having
a slip-rate gradient equal 29.76. Second test results are graphed at 112 (FIG. 17A)
for a new tire and at graph 114 for a worn tire (FIG. 17B). Comparable relative results
are thus verified that slip-ratio variation between a new and a worn tire tread.
[0053] A display (not shown) may be provided for communicating the estimated tire wear state
to an operator of the vehicle. The display may be vehicle-based and/or a handheld
smartphone device connect to display the estimated tire wear state of each tire from
the tire-wear state estimator that calculates the state of tire wear.
[0054] From the foregoing, it will be appreciated that a novel algorithm is provided by
which tire wear state may be indirectly estimated. The tire wear state is estimated
by using a support vector (SV) data classification algorithm 104 as seen in FIG. 15
and explained above. The model inputs for the support vector (SV) data classification
algorithm include: (1) the tire median slip-ratio, and (2) the slip-ratio rate. Median
slip-ratio and slip-ratio rate indirectly characterize the mu-slip curve of the tire
which changes with a change in the tire wear state as demonstrated in the test result
graphs and discussion above. Inputs listed (1 and 2) are determined from statistical
analysis of the wheel signal available on the vehicle CAN bus. Test results summarized
in the graphs above verify the applicability of the algorithm and its effectiveness
in indirectly estimating tire wear.
[0055] A tire wear state estimation system for each tire supporting a vehicle is thus provided
that utilizes a vehicle-based wheel-speed sensor signal available from the CAN bus.
A first tire wear-sensitive feature and a second tire wear-sensitive feature are extracted
from the wheel speed signal using commonly known statistical analysis techniques.
A support vector (SV) data classification algorithm takes the median slip-ratio and
slip-ratio rate input data and, from the data, makes an estimation of the wear state
of the tire.
[0056] With reference to FIG. 15, the method employed by the tire wear state estimation
system, in a broad sense, is not restricted exclusively to tire wear state estimation
but is of particular utility in estimating tire wear state. From a general perspective,
the method employed: utilizes a vehicle-based sensor for measuring a wheel speed of
the tire and generating a wheel speed signal; extracts a first extracted feature from
the wheel speed signal; extracts a second feature from the wheel speed signal; classifies
data from the first extracted feature and data from the second extracted feature using
a support vector data classification algorithm; and applies the algorithm to estimate
the tire state.
[0057] The method further adapts the support vector data classification algorithm through
the use of tire-specific parameter measurements and identification. The tire is equipped
with tire temperature, pressure sensors and a tire ID module from which the tire construction
characteristics may be identified. The support vector data classification algorithm
may be adapted to reflect the measured tire parameters and the tire construction characteristics
by, in essence, shifting the line 116 defining worn vs. new tire classification in
FIG. 15. As the median slip-ratio data and the slip-ratio rate data are extracted
by statistical analysis from the wheel speed signal, the analysis of the tire wear
state may be adapted to reflect the tire parameter measurements and identification.
1. A tire wear state estimation system comprising:
a tire supported by a wheel and supporting a vehicle;
a vehicle-based sensor for measuring wheel speed of the wheel supporting the tire
and generating a wheel speed signal;
a feature-extracting processor for extracting from the wheel speed signal a first
extracted feature;
a feature-extracting processor for extracting from the wheel speed signal a second
extracted feature; and
a data classifier receiving as data inputs first extracted feature data and second
extracted feature data; the data classifier operable to conduct a classification of
the first extraction feature data relative to the second extraction feature data to
estimate a wear state for the tire.
2. The tire wear state estimation system of claim 1 wherein the first extracted feature
is quantitatively changing responsive to a wear level change of the tire, wherein
the second extracted feature is quantitatively changing responsive to a wear level
change of the tire, and wherein the system further comprises a wear state estimator
operable to estimate a wear state for the tire based upon the classification of the
first extraction feature data relative to the second extraction feature data.
3. The tire wear state estimation system of claim 1 or 2, further comprising:
a tire-mounted temperature sensor for measuring temperature of the tire;
a tire-mounted pressure sensor for measuring air pressure within the tire;
a tire identification module mounted to the tire for identifying the tire;
an accessible tire construction database operable to identify tire construction characteristics
based upon tire identification by the tire identification module; and
wherein the data classifier is operable to adaptively modify the classification of
the first extraction feature data relative to the second extraction feature data based
upon the measured temperature of the tire, the measured air pressure within the tire
and the identified tire construction characteristics.
4. The tire wear state estimation system of at least one of the previous claims, wherein
the first extracted feature is a median slip-ratio of the tire and/or wherein the
second extracted feature is a slip-ratio rate of the tire.
5. The tire wear state estimation system of claim 4, wherein the median slip-ratio of
the tire and the slip-ratio rate of the tire are operably determined by a statistical
analysis of the wheel speed signal.
6. The tire wear state estimation system of at least one of the previous claims, wherein
the estimation of the wear state of the tire is operably determined from a support
vector data classification algorithm using as inputs the median slip-ratio data of
the tire and the slip-ratio data of the tire.
7. A method for estimating a tire state of a tire supported by a wheel and supporting
a vehicle, the method comprising:
utilizing a vehicle-based sensor for measuring a wheel speed of the wheel supporting
the tire and generating a wheel speed signal;
extracting a first extracted feature from the wheel speed signal, the first extracted
feature operably changing with a change in the tire state;
extracting a second feature from the wheel speed signal, the second feature operably
changing with a change in the tire state;
classifying data from the first extracted feature and data from the second extracted
feature using a support vector data classification algorithm; and
applying the algorithm to estimate the tire state.
8. The method of claim 7, further comprising:
measuring at least one tire parameter;
applying the at least one tire parameter measurement to adapt the support vector data
classification algorithm; and
applying the adapted support vector data classification algorithm to estimate the
tire state.
9. The method of claim 7 or 8, further comprising:
measuring at least one tire parameter;
applying the at least one tire parameter measurement to adapt the support vector data
classification algorithm; and
applying the adapted algorithm to estimate the tire state.
10. The method of claim 7, 8 or 9, further comprising using a tire-mounted device to measure
the at least one tire parameter.
11. The method of at least one of the previous claims 7 to 10, wherein the at least one
tire parameter is selected from a tire parameter group including tire temperature,
tire inflation pressure and tire construction characteristics.
12. The method of at least one of the previous claims 7 to 11, wherein the tire state
comprises a wear state of the tire.
13. The method of at least one of the previous claims 7 to 12, wherein the first extracted
feature is a median slip-ratio of the tire and/or wherein the second extracted feature
is a slip-ratio rate of the tire.
14. The method of at least one of the previous claims 7 to 13, further comprising deriving
the median slip-ratio of the tire and the slip-ratio rate of the tire from a statistical
analysis of the wheel speed signal.
15. The method of at least one of the previous claims 7 to 14, further comprising using
a tire-mounted device to measure the at least one tire parameter.